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A novel joint support vector machine-cubature Kalman filtering method for adaptive state of charge prediction of lithium-ion batteries.

Song, Qianqian; Wang, Shunli; Xu, Wenhua; Shao, Yanhua; Fernandez, Carlos

Authors

Qianqian Song

Shunli Wang

Wenhua Xu

Yanhua Shao



Abstract

Accurate estimation of SOC of lithium-ion batteries has always been an important work in the battery management system. However, it is often very difficult to accurately estimate the SOC of lithium-ion batteries. Therefore, a novel joint support vector machine - cubature Kalman filtering (SVM-CKF) method is proposed in this paper. SVM is used to train the output data of the CKF algorithm to obtain the model. Meanwhile, the output data of the model is used to compensate the original SOC, to obtain a more accurate estimate of SOC. After the SVM-CKF algorithm is introduced, the amount of data needed for prediction is reduced. By using Beijing Bus Dynamic Stress Test (BBDST) and the Dynamic Stress Test (DST) condition to verify the training model, the results show that the SVM-CKF algorithm can significantly improve the estimation accuracy of Lithium-ion battery SOC, and the maximum error of SOC prediction for BBDST condition is 0.800%, which is reduced by 0.500% compared with CKF algorithm. The maximum error of SOC prediction under DST condition is about 0.450%, which is 1.350% less than that of the CKF algorithm. The overall algorithm has a great improvement in generalization ability, which lays a foundation for subsequent research on SOC prediction.

Citation

SONG, Q., WANG, S., XU, W., SHAO, Y. and FERNANDEZ, C. 2021. A novel joint support vector machine-cubature Kalman filtering method for adaptive state of charge prediction of lithium-ion batteries. International journal of electrochemical science [online], 16(8), article ID 210823. Available from: https://doi.org/10.20964/2021.08.26

Journal Article Type Article
Acceptance Date Jun 1, 2021
Online Publication Date Jun 30, 2021
Publication Date Aug 31, 2021
Deposit Date Jul 2, 2021
Publicly Available Date Jul 2, 2021
Journal International journal of electrochemical science
Electronic ISSN 1452-3981
Publisher Electrochemical Science Group
Peer Reviewed Peer Reviewed
Volume 16
Issue 8
Article Number 210823
DOI https://doi.org/10.20964/2021.08.26
Keywords Lithium-ion battery; Thevenin model; State of charge; Support vector machine; Cubature Kalman filter
Public URL https://rgu-repository.worktribe.com/output/1375644